5.00 credits
30.0 h + 30.0 h
Q2
Teacher(s)
Bianchin Gianluca;
Language
English
> French-friendly
> French-friendly
Prerequisites
This courses assumes familiarity with transfer functions, as taught in
LINMA1510 (Linear Control) or LEPL1106 (Applied mathematics : Signals
and systems)
LINMA1510 (Linear Control) or LEPL1106 (Applied mathematics : Signals
and systems)
Main themes
This class is an introduction to system identification, which consists in finding an appropriate representation of a dynamical system using appropriate measurements. It will cover some of the main parametric and nonparametric methods for identifying dynamical systems, including in closed loop. It will also cover the properties of signals and model classes that are relevant for system identification. A realistic identification project will give students the opportunity to apply and implement the techniques that they will have learned.
Learning outcomes
At the end of this learning unit, the student is able to : | |
1 |
With respect to the L.O. framework, this class contributes to the developpement of the following learning outcomes
|
Content
The following topics will be covered
- Nonparametric methods: temporal analysis, frequential analysis, including Fourier and spectral analysis
- Main classes of LTI systems and their properties, including the notions of identifiability and predictors
- Certain parametric methods: linear regression, instrumental variables, prediction errors, and some statistical methods including the maximum likelihood method
- The properties of (input) signal, including the notion of information content of the signals and the level of persistence of excitation.
- The convergence of the method seen
- Identification techniques for systems controlled in closed loop
Teaching methods
- Regular lectures
- Resolutions of problems under the supervision of a teaching assistant
- Laboratory sessions to be realized in the laboratory room using the available equipment and Matlab or Python
Evaluation methods
- Written or oral exam (75% of the final grade)
- Laboratory reports, quizzes, and homework exercises (written or oral) during the course semester (25% of the final grade)
Other information
The main language used during lectures, exercise sessions, and the laboratory is English. Examinations can be made French-friendly, upon request.
Students are expected to be familiar with dynamical systems and transfer functions.
Students are expected to be familiar with dynamical systems and transfer functions.
Online resources
Bibliography
The course will mainly use notes made available on Moodle. Suggested readings are listed below.
- L. Ljung System Identification - Theory for the user, Prentice Hall, 1999. (disponible en bibliothèque)
- T. Soderstorm and P. Stoica, System Identification (http://user.it.uu.se/~ts/sysidbook.pdf)
- P. van Overschee and B. de Moor - Subspace Identification for Linear Systems: Theory, Implementation, Applications, Springer, 2011.
Faculty or entity
MAP
Programmes / formations proposant cette unité d'enseignement (UE)
Title of the programme
Sigle
Credits
Prerequisites
Learning outcomes
Master [120] in Biomedical Engineering
Master [120] in Mechanical Engineering
Master [120] in Electrical Engineering
Master [120] in Electro-mechanical Engineering
Master [120] in Mathematical Engineering
Master [120] in Data Science Engineering
Master [120] in Data Science: Information Technology
Master [120] in Energy Engineering